Automatic facial axes standardization of 3D fetal ultrasound images
Antonia Alomar, Ricardo Rubio, Laura Salort, Gerard Albaiges, Antoni, Pay\`a, Gemma Piella, Federico Sukno

TL;DR
This paper introduces an AI tool that standardizes fetal facial axes in 3D ultrasound images, improving consistency and aiding early diagnosis of craniofacial anomalies.
Contribution
The study presents a novel neural network architecture that automates the standardization of fetal facial planes in 3D US, reducing variability and clinician workload.
Findings
Significantly reduces inter-observer rotation variability.
Achieves mean geodesic angle difference of 14.12°.
Demonstrates potential for clinical application in fetal assessment.
Abstract
Craniofacial anomalies indicate early developmental disturbances and are usually linked to many genetic syndromes. Early diagnosis is critical, yet ultrasound (US) examinations often fail to identify these features. This study presents an AI-driven tool to assist clinicians in standardizing fetal facial axes/planes in 3D US, reducing sonographer workload and facilitating the facial evaluation. Our network, structured into three blocks-feature extractor, rotation and translation regression, and spatial transformer-processes three orthogonal 2D slices to estimate the necessary transformations for standardizing the facial planes in the 3D US. These transformations are applied to the original 3D US using a differentiable module (the spatial transformer block), yielding a standardized 3D US and the corresponding 2D facial standard planes. The dataset used consists of 1180 fetal facial 3D US…
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Taxonomy
TopicsFetal and Pediatric Neurological Disorders
MethodsSpatial Transformer
